首页 | 本学科首页   官方微博 | 高级检索  
   检索      


Machine‐learning‐based detection of adaptive divergence of the stream mayfly Ephemera strigata populations
Authors:Bin Li  Sakiko Yaegashi  Thaddeus M Carvajal  Maribet Gamboa  Ming‐Chih Chiu  Zongming Ren  Kozo Watanabe
Abstract:Adaptive divergence is a key mechanism shaping the genetic variation of natural populations. A central question linking ecology with evolutionary biology is how spatial environmental heterogeneity can lead to adaptive divergence among local populations within a species. In this study, using a genome scan approach to detect candidate loci under selection, we examined adaptive divergence of the stream mayfly Ephemera strigata in the Natori River Basin in northeastern Japan. We applied a new machine‐learning method (i.e., random forest) besides traditional distance‐based redundancy analysis (dbRDA) to examine relationships between environmental factors and adaptive divergence at non‐neutral loci. Spatial autocorrelation analysis based on neutral loci was employed to examine the dispersal ability of this species. We conclude the following: (a) E. strigata show altitudinal adaptive divergence among the populations in the Natori River Basin; (b) random forest showed higher resolution for detecting adaptive divergence than traditional statistical analysis; and (c) separating all markers into neutral and non‐neutral loci could provide full insight into parameters such as genetic diversity, local adaptation, and dispersal ability.
Keywords:adaptive divergence  altitude  aquatic insect  local adaptation  random forest  STRUCTURE
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号